Video indexing using MPEG motion compensation vectors

E. Ardizzone, M. Cascia, A. Avanzato, A. Bruna
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引用次数: 58

Abstract

In the last years a lot of work has been done on color, textural, structural and semantic indexing of "content-based" video databases. Motion-based video indexing has been less explored, with approaches generally based on the analysis of optical flows. Compressed videos require the decompression of the sequences and the computation of optical flows, two steps computationally heavy. In this paper we propose some methods to index videos by motion features (mainly related to camera motion) and by motion-based spatial segmentation of frames, in a fully automatic way. Our idea is to use MPEG motion vectors as an alternative to optical flows. Their extraction is very simple and fast; it doesn't require a full decompression of the stream and saves us from computing optical flows. Additional computational economy comes from having one motion vector each 16/spl times/16 sub-image; this makes the algorithms faster than working with dense optical flows. Experimental results reported at the end of this paper show that MPEG motion compensation vectors are suitable for this kind of applications.
视频索引使用MPEG运动补偿矢量
在过去的几年里,人们在“基于内容”的视频数据库的颜色、纹理、结构和语义索引方面做了大量的工作。基于运动的视频索引很少被探索,其方法通常基于光流的分析。压缩视频需要对序列进行解压缩和光流的计算,这两个步骤的计算量很大。在本文中,我们提出了一些基于运动特征(主要与摄像机运动相关)和基于运动的帧空间分割的全自动视频索引方法。我们的想法是使用MPEG运动矢量作为光流的替代方案。它们的提取非常简单和快速;它不需要对光流进行完全的解压缩,从而使我们不必计算光流。额外的计算经济来自于每个16/spl次/16子图像有一个运动矢量;这使得算法比处理密集光流更快。本文最后的实验结果表明,MPEG运动补偿向量适合这种应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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